首页> 外文会议>IEEE International Power and Energy Conference >Short Term Load Forecasting Using a Hybrid Neural Network
【24h】

Short Term Load Forecasting Using a Hybrid Neural Network

机译:使用混合神经网络的短期负荷预测

获取原文

摘要

Short Term Load Forecasting (STLF) is very important from the power systems grid operation point of view. STLF involves forecasting load demand in a short term time frame. The short term time frame may consist of half hourly prediction up to weekly prediction. Accurate forecasting would benefit the utility in terms of reliability and stability of the grid ensuring adequate supply is present to meet with the load demand. Apart from that it would also affect the financial performance of the utility company. An accurate forecast would result in better savings while maintaining the security of the grid. This paper outlines the STLF using a novel hybrid online learning neural network, known as the Gaussian Regression (GR). This new hybrid neural network is a combination of two existing online learning neural networks which are the Gaussian Adaptive Resonance Theory (GA) and the Generalized Regression Neural Network (GRNN). Both GA and GRNN implemented online learning, but each of them suffers from limitation. Originally GA is used for unsupervised clustering by compressing the training samples into several categories. A supervised version of GA is available, namely Gaussian ARTMAP (GAM). However, the GAM is still not capable on solving regression problem. On the other hand, GRNN is designed for solving real value estimation (regression) problem, but the learning process would involve of memorizing all training samples, hence high computational cost. The hybrid GR is considered an enhanced version of GRNN with compression ability while still maintains online learning properties. Simulation results show that GR has comparable prediction accuracy and has less prototype as compared to the original GRNN as well as the Support Vector Regression.
机译:短期负载预测(STLF)从电力系统网格操作的角度来看非常重要。 STLF涉及在短期时间范围内预测负载需求。短期时间帧可以由半小时预测组成,其每周预测到每周预测。准确的预测将使效用在可靠性的可靠性和稳定性,确保提供足够的供应以满足负载需求。除此之外,它也会影响公用事业公司的财务表现。准确的预测将导致更好地节省,同时保持网格的安全性。本文概述了使用新型混合在线学习神经网络的STLF,称为高斯回归(GR)。这种新的混合神经网络是两个现有在线学习神经网络的组合,其是高斯自适应共振理论(GA)和广义回归神经网络(GRNN)。 GA和GRNN都实施在线学习,但他们中的每一个都受到限制。最初GA用于通过将培训样本压缩为几个类别来用于无监督的聚类。 GA的监督版本可用,即高斯ArtMap(GAM)。但是,GAM仍然无法解决回归问题。另一方面,GRNN旨在解决实际值估计(回归)问题,但学习过程将涉及记忆所有训练样本,因此高计算成本。混合GR被认为是GRNN的增强版本,具有压缩能力,而仍保持在线学习属性。仿真结果表明,与原始GRNN相比以及支持向量回归相比,GR具有可比的预测精度,并且具有较少的原型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号